计算机科学
吞吐量
人工神经网络
搜索引擎
密度泛函理论
空格(标点符号)
测距
生化工程
化学
机器学习
情报检索
计算化学
无线
工程类
电信
操作系统
作者
Sean D. Griesemer,Bianca Baldassarri,Ruijie Zhu,Jiahong Shen,Koushik Pal,Cheol Woo Park,Chris Wolverton
出处
期刊:Science Advances
[American Association for the Advancement of Science (AAAS)]
日期:2025-01-03
卷期号:11 (1)
标识
DOI:10.1126/sciadv.adq1431
摘要
The computational search for new stable inorganic compounds is faster than ever, thanks to high-throughput density functional theory (DFT). However, stable compound searches remain highly expensive because of the enormous search space and the cost of DFT calculations. To aid these searches, recommendation engines have been developed. We conduct a systematic comparison of the performance of previously developed recommendation engines, specifically ones based on elemental substitution, data mining, and neural network prediction of formation enthalpy. After identifying ways to improve the recommendation engines, we find the neural network to be superior at recommending stable Heusler compounds. Armed with improved recommendation engines, we identify tens of thousands of compounds that are stable at zero temperature and pressure, now available in the Open Quantum Materials Database. We summarize this diverse pool of compounds, including the elusive mixed anion compounds, and two of their many applications: thermoelectricity and solar thermochemical fuel production.
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